Cargando…

Artificial neural networks allow the use of simultaneous measurements of Alzheimer Disease markers for early detection of the disease

BACKGROUND: Previous studies have shown that in platelets of mild Alzheimer Disease (AD) patients there are alterations of specific APP forms, paralleled by alteration in expression level of both ADAM 10 and BACE when compared to control subjects. Due to the poor linear relation among each key-eleme...

Descripción completa

Detalles Bibliográficos
Autores principales: Di Luca, Monica, Grossi, Enzo, Borroni, Barbara, Zimmermann, Martina, Marcello, Elena, Colciaghi, Francesca, Gardoni, Fabrizio, Intraligi, Marco, Padovani, Alessandro, Buscema, Massimo
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2005
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1198261/
https://www.ncbi.nlm.nih.gov/pubmed/16048651
http://dx.doi.org/10.1186/1479-5876-3-30
_version_ 1782124866954067968
author Di Luca, Monica
Grossi, Enzo
Borroni, Barbara
Zimmermann, Martina
Marcello, Elena
Colciaghi, Francesca
Gardoni, Fabrizio
Intraligi, Marco
Padovani, Alessandro
Buscema, Massimo
author_facet Di Luca, Monica
Grossi, Enzo
Borroni, Barbara
Zimmermann, Martina
Marcello, Elena
Colciaghi, Francesca
Gardoni, Fabrizio
Intraligi, Marco
Padovani, Alessandro
Buscema, Massimo
author_sort Di Luca, Monica
collection PubMed
description BACKGROUND: Previous studies have shown that in platelets of mild Alzheimer Disease (AD) patients there are alterations of specific APP forms, paralleled by alteration in expression level of both ADAM 10 and BACE when compared to control subjects. Due to the poor linear relation among each key-element of beta-amyloid cascade and the target diagnosis, the use of systems able to afford non linear tasks, like artificial neural networks (ANNs), should allow a better discriminating capacity in comparison with classical statistics. OBJECTIVE: To evaluate the accuracy of ANNs in AD diagnosis. METHODS: 37 mild-AD patients and 25 control subjects were enrolled, and APP, ADM10 and BACE measures were performed. Fifteen different models of feed-forward and complex-recurrent ANNs (provided by Semeion Research Centre), based on different learning laws (back propagation, sine-net, bi-modal) were compared with the linear discriminant analysis (LDA). RESULTS: The best ANN model correctly identified mild AD patients in the 94% of cases and the control subjects in the 92%. The corresponding diagnostic performance obtained with LDA was 90% and 73%. CONCLUSION: This preliminary study suggests that the processing of biochemical tests related to beta-amyloid cascade with ANNs allows a very good discrimination of AD in early stages, higher than that obtainable with classical statistics methods.
format Text
id pubmed-1198261
institution National Center for Biotechnology Information
language English
publishDate 2005
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-11982612005-09-03 Artificial neural networks allow the use of simultaneous measurements of Alzheimer Disease markers for early detection of the disease Di Luca, Monica Grossi, Enzo Borroni, Barbara Zimmermann, Martina Marcello, Elena Colciaghi, Francesca Gardoni, Fabrizio Intraligi, Marco Padovani, Alessandro Buscema, Massimo J Transl Med Research BACKGROUND: Previous studies have shown that in platelets of mild Alzheimer Disease (AD) patients there are alterations of specific APP forms, paralleled by alteration in expression level of both ADAM 10 and BACE when compared to control subjects. Due to the poor linear relation among each key-element of beta-amyloid cascade and the target diagnosis, the use of systems able to afford non linear tasks, like artificial neural networks (ANNs), should allow a better discriminating capacity in comparison with classical statistics. OBJECTIVE: To evaluate the accuracy of ANNs in AD diagnosis. METHODS: 37 mild-AD patients and 25 control subjects were enrolled, and APP, ADM10 and BACE measures were performed. Fifteen different models of feed-forward and complex-recurrent ANNs (provided by Semeion Research Centre), based on different learning laws (back propagation, sine-net, bi-modal) were compared with the linear discriminant analysis (LDA). RESULTS: The best ANN model correctly identified mild AD patients in the 94% of cases and the control subjects in the 92%. The corresponding diagnostic performance obtained with LDA was 90% and 73%. CONCLUSION: This preliminary study suggests that the processing of biochemical tests related to beta-amyloid cascade with ANNs allows a very good discrimination of AD in early stages, higher than that obtainable with classical statistics methods. BioMed Central 2005-07-27 /pmc/articles/PMC1198261/ /pubmed/16048651 http://dx.doi.org/10.1186/1479-5876-3-30 Text en Copyright © 2005 Di Luca et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Di Luca, Monica
Grossi, Enzo
Borroni, Barbara
Zimmermann, Martina
Marcello, Elena
Colciaghi, Francesca
Gardoni, Fabrizio
Intraligi, Marco
Padovani, Alessandro
Buscema, Massimo
Artificial neural networks allow the use of simultaneous measurements of Alzheimer Disease markers for early detection of the disease
title Artificial neural networks allow the use of simultaneous measurements of Alzheimer Disease markers for early detection of the disease
title_full Artificial neural networks allow the use of simultaneous measurements of Alzheimer Disease markers for early detection of the disease
title_fullStr Artificial neural networks allow the use of simultaneous measurements of Alzheimer Disease markers for early detection of the disease
title_full_unstemmed Artificial neural networks allow the use of simultaneous measurements of Alzheimer Disease markers for early detection of the disease
title_short Artificial neural networks allow the use of simultaneous measurements of Alzheimer Disease markers for early detection of the disease
title_sort artificial neural networks allow the use of simultaneous measurements of alzheimer disease markers for early detection of the disease
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1198261/
https://www.ncbi.nlm.nih.gov/pubmed/16048651
http://dx.doi.org/10.1186/1479-5876-3-30
work_keys_str_mv AT dilucamonica artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT grossienzo artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT borronibarbara artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT zimmermannmartina artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT marcelloelena artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT colciaghifrancesca artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT gardonifabrizio artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT intraligimarco artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT padovanialessandro artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease
AT buscemamassimo artificialneuralnetworksallowtheuseofsimultaneousmeasurementsofalzheimerdiseasemarkersforearlydetectionofthedisease